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Compartive Data Fusion between Genetic Programing and Nueral Network Models for Remote Sensing Images of Water Quality Monitoring

机译:基因编程与神经网络模型的比较数据融合,用于遥感图像水质监测图像

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Historically, algal blooms have proliferated throughout Western Lake Erie as a result of eutrophic conditions caused by urban growth and agricultural activities. Of great concern is the blue-green algae Microcystis that thrives in eutrophic conditions and generates microcystin, a powerful hepatotoxin. Microcystin poses a threat to the delicate ecosystem of Lake Erie, and it threatens commercial fishing operations and water treatment plants using the lake as a water source. Integrated Data Fusion and Machine-learning (IDFM) is an early warning system proposed by this paper for the prediction of microcystin concentrations and distribution by measuring the surface reflectance of the water body using satellite sensors. The fine spatial resolution of Landsat is fused with the high temporal resolution of MODIS to create a synthetic image possessing both high temporal and spatial resolution. As a demonstration, the spatiotemporal distribution of microcystin within western Lake Erie is reconstructed using the band data from the fused products and applied machine-learning techniques. The performance of Artificial Neural Networks (ANN) and Genetic Programming (GP) are compared and tested against traditional two-band model regression techniques. It was found that the GP model performed slightly better at predicting microcystin with an R~2 value of 0.6020 compared to 0.5277 for ANN.
机译:从历史上看,由于城市增长和农业活动引起的富营养化条件,藻类盛会在西湖艾利蔓延增殖。非常关注的是蓝绿藻微囊虫,培养富营养化条件并产生微囊藻,一种强大的肝毒素。微囊藻对伊利湖精致生态系统构成威胁,它将使用湖泊作为水源的商业捕鱼运营和水处理厂。集成数据融合和机器 - 学习(IDFM)是本文提出的预警系统,用于通过测量使用卫星传感器的水体的表面反射来预测微囊藻浓度和分布。 Landsat的精细空间分辨率与MODIS的高时间分辨率融合,以创建具有高时间和空间分辨率的合成图像。作为示范,使用来自融合产品的频带数据和应用的机器学习技术来重建西湖伊利中微囊藻的时空分布。比较人工神经网络(ANN)和遗传编程(GP)的性能,并针对传统的双频模型回归技术进行测试。发现,在预测R〜2值为0.6020的微囊藻时,GP模型稍微略微更好地进行0.6020。

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